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Spatially Enhanced Differential RNA Methylation Analysis from Affinity-Based Sequencing Data with Hidden Markov Model

机译:隐藏式马云模型的亲和基于序列数据的空间增强的差分RNA甲基化分析

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摘要

With the development of new sequencing technology, the entire N6-methyl-adenosine (m~6A) RNA methylome can now be unbiased profiled with methylated RNA immune-precipitation sequencing technique (MeRIP-Seq), making it possible to detect differential methylation states of RNA between two conditions, for example, between normal and cancerous tissue. However, as an affinity-based method, MeRIP-Seq has yet provided base-pair resolution; that is, a single methylation site determined from MeRIP-Seq data can in practice contain multiple RNA methylation residuals, some of which can be regulated by different enzymes and thus differentially methylated between two conditions. Since existing peak-based methods could not effectively differentiate multiple methylation residuals located within a single methylation site, we propose a hidden Markov model (HMM) based approach to address this issue. Specifically, the detected RNA methylation site is further divided into multiple adjacent small bins and then scanned with higher resolution using a hidden Markov model to model the dependency between spatially adjacent bins for improved accuracy. We tested the proposed algorithm on both simulated data and real data. Result suggests that the proposed algorithm clearly outperforms existing peak-based approach on simulated systems and detects differential methylation regions with higher statistical significance on real dataset.
机译:随着新测序技术的发展,整个N6-甲基 - 腺苷(M〜6a)RNA甲基胺现在可以用甲基化RNA免疫沉淀测序技术(MERIP-SEQ)无偏见,使得可以检测差分甲基化状态两个条件之间的RNA,例如,正常和癌组织之间。然而,作为基于亲和的方法,Merip-SEQ还具有基础对分辨率;也就是说,从MERIP-SEQ数据中确定的单个甲基化位点可以实践含有多个RNA甲基化残留物,其中一些可以由不同的酶调节,因此在两个条件下差异甲基化。由于现有的基于峰的方法无法有效地区分位于单个甲基化位点内的多种甲基化残留物,因此我们提出了一种基于隐马的Markov模型(HMM)方法来解决这个问题。具体地,检测到的RNA甲基化位点进一步被分成多个相邻的小箱,然后使用隐马尔可夫模型以更高的分辨率扫描,以模拟空间相邻的箱之间的依赖性,以提高精度。我们在模拟数据和实际数据上测试了所提出的算法。结果表明,所提出的算法显然优于仿真系统上存在的基于峰的方法,并检测差分甲基化区域,对实际数据集具有更高的统计显着性。

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